Litcius/Paper detail

A Cloud-Dependent 1DVAR Precipitation Retrieval Algorithm for FengYun-3D Microwave Soundings: A Case Study in Tropical Cyclone Mekkhala

Jintao Xu, Ziqiang Ma, Hao Hu, Fuzhong Weng

2023IEEE Geoscience and Remote Sensing Letters16 citationsDOI

Abstract

A cloud-dependent 1-D variational (1DVAR) precipitation retrieval algorithm applied to FengYun-3D microwave soundings (CD1DVAR-FY3DMS) is developed in this study. Compared with the current 1DVAR precipitation retrieval framework, cloud scene identification (CSI) is first proposed to delineate the different weather conditions including clear sky, stratiform clouds, and convective clouds. Results of this study in a typical tropical cyclone event demonstrate that: 1) the precipitation retrievals considering CSI (correlation coefficient ~0.72 and root mean square error ~1.63 mm/h) outperform those without distinguishing cloud scenes (correlation coefficient ~0.66 and root mean square error ~1.82 mm/h); 2) identifying cloud scenes in a variational scheme could significantly improve the accuracy of retrieving heavy precipitation volumes, with the capturing abilities improved by ~100%; and 3) the FengYun-3 constellation has great potential to complement global microwave retrievals. In addition, these findings could provide valuable references and pathfinders for further improving the retrieval accuracy of microwave-based precipitation estimates, especially for strong convective zones.

Topics & Concepts

PrecipitationCorrelation coefficientEnvironmental scienceMeteorologyTropical cycloneMean squared errorMicrowaveCloud computingComputer scienceAlgorithmRemote sensingGeologyMathematicsPhysicsStatisticsMachine learningTelecommunicationsOperating systemPrecipitation Measurement and AnalysisMeteorological Phenomena and SimulationsTropical and Extratropical Cyclones Research